Weekly Token Unlock: STRK Unlock Volume This Week Accounts for 4.4% of Circulating Supply

marsbitPubblicato 2026-03-07Pubblicato ultima volta 2026-03-07

Introduzione

Starknet Token Unlock: STRK to Release 4.4% of Circulating Supply This Week Starknet, an Ethereum Layer 2 scaling solution using zk-STARKs technology to enable faster and cheaper transactions, is set to unlock 127 million STRK tokens this week. The unlock is valued at approximately $4.84 million and represents 4.4% of the token's circulating supply. Developed by StarkWare, which was founded in 2018 and is based in Israel, Starknet aims to improve Ethereum’s scalability by offloading transaction verification and computation from the mainnet. This approach significantly reduces the computational burden and increases network throughput. The release is part of Starknet’s predefined token emission schedule.

Starknet

Project Twitter: https://twitter.com/Starknet

Project Website: https://starknet.io/

This Unlock Amount: 127 million tokens

This Unlock Value: Approximately $4.84 million

Starknet is an Ethereum Layer 2 that utilizes zk-STARKs technology to make Ethereum transactions faster and reduce fees. StarkNet's parent company, StarkWare, was founded in 2018 and is headquartered in Israel. Its main products include Starknet and StarkEx. By using STARK, Starknet verifies transactions and computations without requiring all network nodes to validate each operation. This significantly reduces the computational burden and increases the throughput of the blockchain network.

The specific release curve is as follows:

Domande pertinenti

QWhat is the amount of STRK tokens being unlocked this week?

A127 million tokens.

QWhat is the approximate value of the STRK tokens being unlocked this week in USD?

AApproximately $4.84 million.

QWhat is the percentage of the circulating supply that this week's STRK unlock represents?

A4.4% of the circulating supply.

QWhat is Starknet and what problem does it aim to solve?

AStarknet is an Ethereum Layer 2 that uses zk-STARKs technology to make Ethereum transactions faster and cheaper by verifying transactions without requiring all network nodes to validate each operation.

QWho is the parent company of Starknet and what are its other main products?

AThe parent company is StarkWare, which was founded in 2018 and is headquartered in Israel. Its other main product is StarkEx.

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